Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency...

11
Infra-slow oscillations & consciousness

Transcript of Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency...

Page 1: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Infra-slow oscillations & consciousness

Page 2: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Infra-slow oscillations

Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz

Prominent during sleep

Present in awake brain?

Infra-slow activity fluctuations in fMRI BOLD signal

Task specific / Resting state networks

Vanhatalo, Palva et al., PNAS 2004

Page 3: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Somatosensory detection task

8 subjects

Weak, constant-current electrical stimuli at the threshold of detection

ISI 3-6 s

TASK: indicate detected stimuli with thumb twitch

Detection rate ~40 %

Direct current (DC) electrodes

EMG to detect thumb switches

Page 4: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

The clustering of Hit probability

The clustering of HITs and MISSES

Page 5: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

The clustering of Hit probability

Non-random performance

Detections are clustered

Detection ”runs” between 18-72 seconds more prominent than expected

Page 6: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

The correlation of infra-slow oscillations & behaviour

Page 7: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Hit probability is correlated with the phase of infra-slow oscillations

Detection is more probable in the rising than falling phases of infra-slow oscillations

Detection is not depended on the amplitude nor on the real part of the infra-slow oscillations

Page 8: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Phase-locking of infra-slow oscillations in individual subjects

In every subject, the detection is more probale in the rising than in the falling phase

The presence of alternating task-specific and resting state networks?

Page 9: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Correlation of higher frequencies with the infra-slow oscillations

All frequencies from 1.25 Hz to 40 Hz are nested with the infra-slow oscillations

Amplitude is high during the rising phase of infra-slow oscillation

Page 10: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Results and Implications

The phase of infra-slow oscillations correlates with the detection of weak threshold level somatosensory stimuli

The alternation between task-specific and resting state networks determine the fate of the stimulus

Amplitude does not correlate with detection

No gross excitability changes

Higher frequencies are nested into infra-slow oscillations

Co-operation between all frequencies facilitate detection,

Network excitability

Page 11: Infra-slow oscillations & consciousness. Infra-slow oscillations Slow fluctuations in the frequency range of 0.01Hz -0.1 Hz Prominent during sleep Present.

Acknowledgements

Systems Neuroscience and Informatics Group @ Neuroscience Center, University of Helsinki

J. Matias Palva

Tomi Maila

Simo Monto

Shrikanth Kulashekhar

Santeri Rouhinen